Collecting Diary Data on Twitter

Author(s):  
Ashley Richards ◽  
Elizabeth Dean ◽  
Sarah Cook
Keyword(s):  
1987 ◽  
Vol 18 (2) ◽  
pp. 112-130
Author(s):  
Mary Ann Romski ◽  
Sharon Ellis Joyner ◽  
Rose A. Sevcik

Studies of first-word acquisition in typical language-learning children frequently take the form of diary studies. Comparable diary data from language-impaired children with developmental delays, however, are not currently available. This report describes the spontaneous vocalizations of a child with a developmental delay for 14 months, from the time he was age 6:5 to age 7:7. From a corpus of 285 utterances, 47 phonetic forms were identified and categorized. Analysis focused on semantic, communicative, and phonological usage patterns.


2020 ◽  
Vol 19 (3) ◽  
pp. 125-134
Author(s):  
Bettina S. Wiese ◽  
Olivia Chaillié ◽  
Ruth Noppeney ◽  
Anna M. Stertz

Abstract. The study investigates how commuting strain affects daily self-control capacities at work and at home. Irritability (i.e., increased readiness to express negative emotions when facing frustration) and concentration (i.e., a cognitive control capacity that relies on attention) were used as indicators of (impaired) self-control. Based on 5-day diary data from N = 185 train commuters, we found that on days with a strenuous ride from home to work, commuters indicated higher irritability and lower concentration capacity at work. On days with higher strain during the work-to-home ride, commuters reported to be more irritable back home. Moreover, commuters with low emotional stability turned out to be more affected by commuting strain but only if considering self-control impairment at home.


2019 ◽  
Vol 9 (1) ◽  
Author(s):  
Zhengguo Gu ◽  
Niek C. de Schipper ◽  
Katrijn Van Deun

AbstractInterdisciplinary research often involves analyzing data obtained from different data sources with respect to the same subjects, objects, or experimental units. For example, global positioning systems (GPS) data have been coupled with travel diary data, resulting in a better understanding of traveling behavior. The GPS data and the travel diary data are very different in nature, and, to analyze the two types of data jointly, one often uses data integration techniques, such as the regularized simultaneous component analysis (regularized SCA) method. Regularized SCA is an extension of the (sparse) principle component analysis model to the cases where at least two data blocks are jointly analyzed, which - in order to reveal the joint and unique sources of variation - heavily relies on proper selection of the set of variables (i.e., component loadings) in the components. Regularized SCA requires a proper variable selection method to either identify the optimal values for tuning parameters or stably select variables. By means of two simulation studies with various noise and sparseness levels in simulated data, we compare six variable selection methods, which are cross-validation (CV) with the “one-standard-error” rule, repeated double CV (rdCV), BIC, Bolasso with CV, stability selection, and index of sparseness (IS) - a lesser known (compared to the first five methods) but computationally efficient method. Results show that IS is the best-performing variable selection method.


2020 ◽  
pp. 073346482097924
Author(s):  
Molly A. Mather ◽  
Holly B. Laws ◽  
Jasmine S. Dixon ◽  
Rebecca E. Ready ◽  
Anna M. Akerstedt

Poor sleep in persons with Alzheimer’s disease (AD) is a common stressor for family caregivers. Retrospective reports support associations between sleep disturbance in persons with AD and worse caregiver mood; however, prospective associations between sleep in persons with AD and caregiver outcomes have not been studied. The current study determined associations between affect and sleep of persons with AD and their caregivers using daily diary data. Multilevel mediation models indicated that sleep in persons with AD is linked to caregiver affect; furthermore, these associations are mediated by sleep characteristics in caregivers and affect in persons with AD. Daily fluctuations in sleep behaviors in persons with AD—rather than average values—were most strongly associated with caregiver outcomes. Interventions to improve sleep in persons with AD may decrease their negative affect and improve caregiver mood.


Author(s):  
Hannah L. Bradwell ◽  
Rhona Winnington ◽  
Serge Thill ◽  
Ray B. Jones
Keyword(s):  

2011 ◽  
Vol 19 (3) ◽  
pp. 394-404 ◽  
Author(s):  
Jie Chen ◽  
Shih-Lung Shaw ◽  
Hongbo Yu ◽  
Feng Lu ◽  
Yanwei Chai ◽  
...  

2021 ◽  
pp. 194855062110228
Author(s):  
Lisa A. Neff ◽  
Marci E. J. Gleason ◽  
Erin E. Crockett ◽  
Oyku Ciftci

The COVID-19 pandemic created a unique climate for examining the links between stressful conditions and couples’ relationship well-being. According to theories of stress spillover, stressors originating outside the relationship, such as work stress and financial uncertainty, often undermine relationship quality. However, if individuals can easily attribute their problems to the stressful circumstances, their relationship may be more resilient. Given the salience of the pandemic, the current study used two waves of 14-day daily diary data collected from 191 participants to examine whether blaming the pandemic for problems may reduce stress spillover. We also expected the buffering effect of pandemic blaming attributions to wane as stressful conditions persisted and continued to tax partners’ coping resources. Multilevel modeling confirmed that women, but not men, who were more blaming of the pandemic exhibited reduced stress spillover during the COVID-19 outbreak; notably, this buffering effect did not weaken over time.


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